Spectral information criterion for automatic elbow detection
Fecha
2023
Título de la revista
ISSN de la revista
Título del volumen
Editor
Elsevier
Resumen
We introduce a generalized information criterion that contains other well-known information criteria, such as
Bayesian information Criterion (BIC) and Akaike information criterion (AIC), as special cases. Furthermore,
the proposed spectral information criterion (SIC) is also more general than the other information criteria, e.g.,
since the knowledge of a likelihood function is not strictly required. SIC extracts geometric features of the error
curve and, as a consequence, it can be considered an automatic elbow detector. SIC provides a subset of all
possible models, with a cardinality that often is much smaller than the total number of possible models. The
elements of this subset are ‘‘elbows’’ of the error curve. A practical rule for selecting a unique model within
the sets of elbows is suggested as well. Theoretical invariance properties of SIC are analyzed. Moreover, we
test SIC in ideal scenarios where provides always the optimal expected results. We also test SIC in several
numerical experiments: some involving synthetic data, and two experiments involving real datasets. They are
all real-world applications such as clustering, variable selection, or polynomial order selection, to name a few.
The results show the benefits of the proposed scheme. Matlab code related to the experiments is also provided.
Possible future research lines are finally discussed.
Descripción
The work was partially supported by the Young Researchers R&D Project, ref. num. F861 (AUTO-BA-GRAPH) funded by Community of Madrid and Rey Juan Carlos University, Spain, and by Agencia Estatal de Investigación AEI, Spain (project SP-GRAPH, ref. num. PID2019-105032GB-I00).
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Citación
Luca Martino, Roberto San Millán-Castillo, Eduardo Morgado, Spectral information criterion for automatic elbow detection, Expert Systems with Applications, Volume 231, 2023, 120705, ISSN 0957-4174, https://doi.org/10.1016/j.eswa.2023.120705
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